A Condensed History Approach to X-Ray Dark Field Effects in Edge Illumination Phase Contrast Simulations.

N Francken, J Sanctorum, J Renders, P Paramonov, J Sijbers, J De Beenhouwer
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Abstract

X-ray dark field signals, measurable in many x-ray phase contrast imaging (XPCI) setups, stem from unresolvable microstructures in the scanned sample. This makes them ideally suited for the detection of certain pathologies, which correlate with changes in the microstructure of a sample. Simulations of x-ray dark field signals can aid in the design and optimization of XPCI setups, and the development of new reconstruction techniques. Current simulation tools, however, require explicit modelling of the sample microstructures according to their size and spatial distribution. This process is cumbersome, does not translate well between different samples, and considerably slows down simulations. In this work, a condensed history approach to modelling x-ray dark field effects is presented, under the assumption of an isotropic distribution of microstructures, and applied to edge illumination phase contrast simulations. It substantially simplifies the sample model, can be easily ported between samples, and is two orders of magnitude faster than conventional dark field simulations, while showing equivalent results.Clinical relevance- Dark field signal provides information on the microstructure distribution within the investigated sample, which can be applied in areas such as histology and lung x-ray imaging. Efficient simulation tools for this dark field signal aid in optimizing scanning setups, acquisition schemes and reconstruction techniques.

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边缘照明相位对比模拟中 X 射线暗场效应的凝聚史方法。
在许多 X 射线相位对比成像(XPCI)装置中都能测量到 X 射线暗场信号,这些信号来自扫描样品中无法分辨的微观结构。这使得暗场信号非常适合检测某些病理现象,因为这些病理现象与样品微观结构的变化相关。模拟 X 射线暗场信号有助于设计和优化 XPCI 设置,并有助于开发新的重建技术。然而,当前的模拟工具需要根据样品的尺寸和空间分布对样品的微观结构进行明确建模。这一过程非常繁琐,不能在不同样品之间很好地转换,而且大大降低了模拟速度。在这项工作中,在微结构各向同性分布的假设下,提出了一种模拟 X 射线暗场效应的凝聚历史方法,并将其应用于边缘照明相衬模拟。这种方法大大简化了样品模型,可在不同样品间轻松移植,而且比传统暗场模拟快两个数量级,同时显示出同等的结果。这种暗场信号的高效模拟工具有助于优化扫描设置、采集方案和重建技术。
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